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首页> 外文期刊>Journal of natural gas science and engineering >Direct estimation of the fluid properties and brittleness via elastic impedance inversion for predicting sweet spots and the fracturing area in the unconventional reservoir
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Direct estimation of the fluid properties and brittleness via elastic impedance inversion for predicting sweet spots and the fracturing area in the unconventional reservoir

机译:通过弹性阻抗反转直接估计流体性质和脆性,以预测非传统水库中的甜点和压裂区域

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摘要

Fluid identification and the level of brittleness estimated from seismic data play an extremely important role in unconventional reservoir characterization and development. Based on the theory of porous media and the AVO theory, a new elastic impedance equation is derived that includes the effective pore-fluid modulus as the fluid indicator and the product of the Young's modulus and density as the brittleness estimation factor. By comparing the accuracy of different models, the new elastic impedance equation is verified to meet the requirements of small and medium angles of incidence. Next, an elastic impedance inversion method based on a Bayesian framework is established that directly extracts the fluid identification information and the brittleness evaluation information, avoids the cumulative error of the indirect method, and improves the accuracy of the calculation results. Based on a model test, the direct estimation method is found to make full use of the strong anti-noise ability and practicability of the elastic impedance inversion; in addition, the application of real data demonstrates that the proposed inversion method has high accuracy and strong reliability. (C) 2017 Elsevier B.V. All rights reserved.
机译:流体识别和地震数据估计的脆性水平在非传统的储层特征和发展中起着极其重要的作用。基于多孔介质和AVO理论的理论,推导出一种新的弹性阻抗方程,其包括作为流体指示器的有效孔隙流体模量和杨氏模量和密度作为脆性估计因子的产品。通过比较不同模型的准确性,验证了新的弹性阻抗方程以满足中小型入射角的要求。接下来,建立基于贝叶斯框架的弹性阻抗反演方法,该方法直接提取流体识别信息和脆性评估信息,避免了间接方法的累积误差,并提高了计算结果的准确性。基于模型试验,发现直接估计方法充分利用弹性阻抗反转的强抗噪声能力和实用性;此外,实际数据的应用表明,所提出的反转方法具有高精度和更强的可靠性。 (c)2017 Elsevier B.v.保留所有权利。

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